A new MR-SAD algorithm for the automatic building of protein models from low-resolution X-ray data and a poor starting model

Author:

Skubák Pavol,Araç Demet,Bowler Matthew W.ORCID,Correia Ana R.,Hoelz Andre,Larsen SineORCID,Leonard Gordon A.ORCID,McCarthy Andrew A.,McSweeney Sean,Mueller-Dieckmann Christoph,Otten HarmORCID,Salzman GabrielORCID,Pannu Navraj S.

Abstract

Determining macromolecular structures from X-ray data with resolution worse than 3 Å remains a challenge. Even if a related starting model is available, its incompleteness or its bias together with a low observation-to-parameter ratio can render the process unsuccessful or very time-consuming. Yet, many biologically important macromolecules, especially large macromolecular assemblies, membrane proteins and receptors, tend to provide crystals that diffract to low resolution. A new algorithm to tackle this problem is presented that uses a multivariate function to simultaneously exploit information from both an initial partial model and low-resolution single-wavelength anomalous diffraction data. The new approach has been used for six challenging structure determinations, including the crystal structures of membrane proteins and macromolecular complexes that have evaded experts using other methods, and large structures from a 3.0 Å resolution F1-ATPase data set and a 4.5 Å resolution SecYEG–SecA complex data set. All of the models were automatically built by the method toRfreevalues of between 28.9 and 39.9% and were free from the initial model bias.

Funder

Nederlandse Organisatie voor Wetenschappelijk Onderzoek

National Cancer Institute

National Institute of General Medical Sciences

National Institutes of Health

National Foundation for Cancer Research

Sidney Kimmel Foundation for Cancer Research

Gordon and Betty Moore Foundation

Science and Technology Facilities Council

Arnold and Mabel Beckman Foundation

Publisher

International Union of Crystallography (IUCr)

Subject

Condensed Matter Physics,General Materials Science,Biochemistry,General Chemistry

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